[
  {
    "title": "Efficient Layout-Guided Image Inpainting for Mobile Use",
    "base_url": "https://openaccess.thecvf.com/content/WACV2024",
    "title_page": "/html/Li_Efficient_Layout-Guided_Image_Inpainting_for_Mobile_Use_WACV_2024_paper.html",
    "github": null,
    "web_page": null,
    "github_page": null,
    "colab": null,
    "modelscope": null,
    "gitee": null,
    "gitlab": null,
    "zenodo": null,
    "kaggle": null,
    "demo_page": null,
    "paper_thecvf": "/papers/Li_Efficient_Layout-Guided_Image_Inpainting_for_Mobile_Use_WACV_2024_paper.pdf",
    "paper_arxiv_id": null,
    "paper_pdf": null,
    "paper_hal_science": null,
    "paper_researchgate": null,
    "paper_amazon": null,
    "youtube_id": "ZFzpM3u0Wl0",
    "drive_google": null,
    "dropbox": null,
    "onedrive": null,
    "loom": null,
    "section": "Smartphones / End User Devices"
  },
  {
    "title": "Edge Inference with Fully Differentiable Quantized Mixed Precision Neural Networks",
    "base_url": "https://openaccess.thecvf.com/content/WACV2024",
    "title_page": "/html/Schaefer_Edge_Inference_With_Fully_Differentiable_Quantized_Mixed_Precision_Neural_Networks_WACV_2024_paper.html",
    "github": null,
    "web_page": null,
    "github_page": null,
    "colab": null,
    "modelscope": null,
    "gitee": null,
    "gitlab": null,
    "zenodo": null,
    "kaggle": null,
    "demo_page": null,
    "paper_thecvf": "/papers/Schaefer_Edge_Inference_With_Fully_Differentiable_Quantized_Mixed_Precision_Neural_Networks_WACV_2024_paper.pdf",
    "paper_arxiv_id": "2206.07741",
    "paper_pdf": null,
    "paper_hal_science": null,
    "paper_researchgate": null,
    "paper_amazon": null,
    "youtube_id": null,
    "drive_google": null,
    "dropbox": null,
    "onedrive": null,
    "loom": null,
    "section": "Smartphones / End User Devices"
  },
  {
    "title": "POP-VQA - Privacy Preserving, On-Device, Personalized Visual Question Answering",
    "base_url": "https://openaccess.thecvf.com/content/WACV2024",
    "title_page": "/html/Sahu_POP-VQA_-_Privacy_Preserving_On-Device_Personalized_Visual_Question_Answering_WACV_2024_paper.html",
    "github": null,
    "web_page": null,
    "github_page": null,
    "colab": null,
    "modelscope": null,
    "gitee": null,
    "gitlab": null,
    "zenodo": null,
    "kaggle": null,
    "demo_page": null,
    "paper_thecvf": "/papers/Sahu_POP-VQA_-_Privacy_Preserving_On-Device_Personalized_Visual_Question_Answering_WACV_2024_paper.pdf",
    "paper_arxiv_id": null,
    "paper_pdf": null,
    "paper_hal_science": null,
    "paper_researchgate": null,
    "paper_amazon": null,
    "youtube_id": "gIXabUB5G98",
    "drive_google": null,
    "dropbox": null,
    "onedrive": null,
    "loom": null,
    "section": "Smartphones / End User Devices"
  },
  {
    "title": "Sketch-based Video Object Localization",
    "base_url": "https://openaccess.thecvf.com/content/WACV2024",
    "title_page": "/html/Woo_Sketch-Based_Video_Object_Localization_WACV_2024_paper.html",
    "github": "sangminwoo/SVOL",
    "web_page": null,
    "github_page": null,
    "colab": null,
    "modelscope": null,
    "gitee": null,
    "gitlab": null,
    "zenodo": null,
    "kaggle": null,
    "demo_page": null,
    "paper_thecvf": "/papers/Woo_Sketch-Based_Video_Object_Localization_WACV_2024_paper.pdf",
    "paper_arxiv_id": "2304.00450",
    "paper_pdf": null,
    "paper_hal_science": null,
    "paper_researchgate": null,
    "paper_amazon": null,
    "youtube_id": "_RSFXFoikxE",
    "drive_google": null,
    "dropbox": null,
    "onedrive": null,
    "loom": null,
    "section": "Smartphones / End User Devices"
  },
  {
    "title": "Feed-Forward Latent Domain Adaptation",
    "base_url": "https://openaccess.thecvf.com/content/WACV2024",
    "title_page": "/html/Bohdal_Feed-Forward_Latent_Domain_Adaptation_WACV_2024_paper.html",
    "github": null,
    "web_page": null,
    "github_page": "https://ondrejbohdal.github.io/cxda/",
    "colab": null,
    "modelscope": null,
    "gitee": null,
    "gitlab": null,
    "zenodo": null,
    "kaggle": null,
    "demo_page": null,
    "paper_thecvf": "/papers/Bohdal_Feed-Forward_Latent_Domain_Adaptation_WACV_2024_paper.pdf",
    "paper_arxiv_id": "2207.07624",
    "paper_pdf": null,
    "paper_hal_science": null,
    "paper_researchgate": null,
    "paper_amazon": null,
    "youtube_id": "siNQ1eorPas",
    "drive_google": null,
    "dropbox": null,
    "onedrive": null,
    "loom": null,
    "section": "Smartphones / End User Devices"
  },
  {
    "title": "BSRAW: Improving Blind RAW Image Super-Resolution",
    "base_url": "https://openaccess.thecvf.com/content/WACV2024",
    "title_page": "/html/Conde_BSRAW_Improving_Blind_RAW_Image_Super-Resolution_WACV_2024_paper.html",
    "github": null,
    "web_page": null,
    "github_page": null,
    "colab": null,
    "modelscope": null,
    "gitee": null,
    "gitlab": null,
    "zenodo": null,
    "kaggle": null,
    "demo_page": null,
    "paper_thecvf": "/papers/Conde_BSRAW_Improving_Blind_RAW_Image_Super-Resolution_WACV_2024_paper.pdf",
    "paper_arxiv_id": "2312.15487",
    "paper_pdf": null,
    "paper_hal_science": null,
    "paper_researchgate": null,
    "paper_amazon": null,
    "youtube_id": "UhxAeK8LueU",
    "drive_google": null,
    "dropbox": null,
    "onedrive": null,
    "loom": null,
    "section": "Smartphones / End User Devices"
  }
]